Tuning A Three-Phase Separator Level Controller via Particle Swarm OptimizationAlgorithm

L. Sathasivam, I. Elamvazuthi, M.K.A.Ahmed Khan, S. Parasuraman
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引用次数: 4

Abstract

Three-Phase Separators are used to separate well crudes into three portions; water, oil, and gas. A suitable control system should be in place to ensure the optimum function of the Three-Phase Separator. The current PID tuning technique does not provide an optimum system response of the separator. Overshoot response, offset, steady-state error and system instability are some of the problems faced. Besides, the current method used is purely based on trial and error which is time consuming. There is room for improvement of the current PID tuning technique. An artificial intelligence (AI) PID tuning technique called Particle Swarm Optimization (PSO) is introduced to improve the system response of the Three-Phase Separator. The PSO algorithm mimics the behaviour of bird flocking and fish schooling striving for its global best position. In our case, the global best position is replaced with the optimized PID tuning parameters for the separator. The PSO algorithm has been used in several other applications such as the Brushless DC motor and in the Control Ball & Beam system. It has proven to be an effective tuning technique. Tuning of the Three-Phase Separator via PSO could prove to be an effective solution for Oil & Gas industries.
基于粒子群优化算法的三相分离器液位控制器调谐
三相分离器用于将油井原油分离成三部分;水、油和气。适当的控制系统应到位,以确保三相分离器的最佳功能。目前的PID整定技术不能提供分离器的最佳系统响应。超调响应、偏置、稳态误差和系统不稳定性是该系统面临的一些问题。此外,目前使用的方法纯粹是基于试错法,耗时长。目前的PID整定技术还有改进的空间。为了改善三相分离器的系统响应,引入了一种人工智能PID整定技术——粒子群优化(PSO)。粒子群算法模拟鸟群和鱼群的行为,以争取其全局最佳位置。在我们的例子中,全局最佳位置被分离器的优化PID整定参数所取代。粒子群算法已被用于其他几个应用,如无刷直流电机和控制球梁系统。它已被证明是一种有效的调优技术。通过PSO对三相分离器进行调整可能是石油和天然气行业的有效解决方案。
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